价格预测显示出什么?MATIC 会跌至两年来的最低点吗?

金色财经2024-08-12 tarihinde yayınlandı2024-08-12 tarihinde güncellendi

MATIC 尚未发出任何信号表明多头已准备好扭转看跌趋势。

  • 代币持有者遭受了巨大损失,恢复变得更加困难。

  • 网络MDIA显示停滞的现象已开始蔓延。

Polygon [MATIC]处于强劲的下行趋势中。它始于 4 月初,日线图上跌破 0.91 美元。截至发稿时,MATIC 的交易价格低于 2023 年的年度低点 0.492 美元。

多头与空头展开了激烈的较量,但收效甚微。8 月 5 日,2022 年的年度低点 0.316 美元几乎被重新测试,当天代币跌至 0.334 美元。

网络活动和积累不足以阻止下跌趋势

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过去两周,新创建的地址数量有所下降。6 月和 7 月大部分时间,该数字稳定在 600 个左右,但 8 月有所下降。

活跃地址数量略低于 7 月下半月,但过去一周略有增加。

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负向流动表明 MATIC 在过去一个月内退出了交易所。美元数字约为 66 万美元。相比之下,MATIC 的市值和前一天的 24 小时交易量分别为 41.6 亿美元和 1.3 亿美元。

为什么 MATIC 多头很难启动复苏?

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自 3 月以来持续的下跌趋势意味着持有者处于亏损状态。每次小幅上涨都是持有者退出无利可图的投资的机会。OBV 反映了这种持续的抛售压力。

动量震荡指标已在零线以下运行两个月,表明看跌势头占主导地位。

V8Dl3wmNWq99tQp4fpKfcvf40DZycssF4KEUCqN6.jpeg

7 月份,流通量指标下降,而流通速度则上升。这表明存在波动性和投机性交易。过去 10 天,指标趋势表明持有者更不愿意出售。

这可能是一种信心的表现,但其他所有信号依然看跌。

平均美元投资年限呈上升趋势,这是长期持有的另一个迹象。下跌表明代币流动增加,并有助于价格复苏。

MATIC未来展望

在乐观的展望中,随着 Polygon 获得越来越多的关注和采用,MATIC 实现价格大幅升值的潜力巨大。

如果加密货币整体市值达到 3 万亿美元,并且 MATIC 保持其目前 0.5% 的市场主导地位,其价格可能会攀升至 1.63 美元。此外,如果市值升至惊人的 10 万亿美元,MATIC 的价格可能会飙升至约 5.44 美元。这种情况将意味着价值可能增长七倍,为投资者带来可观的回报。

尾结

总体而言,Polygon 的未来是投资者和行业观察家们热切关注的话题。Polygon (MATIC) 已成为加密货币领域的杰出参与者,解决了困扰以太坊网络的可扩展性挑战。由于以太坊是市值第二大的加密货币,其广泛采用导致交易成本增加和网络拥堵。

Polygon 提供第 2 层扩展解决方案,旨在通过降低交易费用、提高吞吐量以及跨不同区块链的无缝互操作性来增强以太坊的性能。这种战略方法使 Polygon 成为更广泛采用区块链技术的关键推动者。

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